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Modelling major failures in power grids in the whole range

机译:在整个范围内对电网的重大故障进行建模

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Empirical research with electricity transmission networks reliability data shows that the size of major failures - in terms of energy not supplied (ENS), total loss of power (TLP) or restoration time (RT) - appear to follow a power law behaviour in the upper tail of the distribution. However, this pattern (also known as Pareto distribution) is not valid in the whole range of those major events. We aimed to find a probability distribution that we could use to model them, and hypothesized that there is a two-parameter model that fits the pattern of those data well in the entire domain. We considered the major failures produced between 2002 and 2012 in the European power grid; analyzed those reliability indicators: ENS, TLP and RT; fitted six alternative models: Pareto Ⅱ, Fisk, Lognormal, Pareto, Weibull and Gamma distributions, to the data by maximum likelihood; compared these models by the Bayesian information criterion; tested the goodness-of-fit of those models by a Kolmogorov-Smirnov test method based on bootstrap resampling; and validated them graphically by rank-size plots. We found that Pareto Ⅱ distribution is, in the case of TLP, an adequate model to describe major events reliability data of power grids in the whole range, and in the case of ENS and RT, is the best choice of the six alternative models analyzed.
机译:对输电网络可靠性数据的实证研究表明,主要故障的规模(按照未供应的能源(ENS),总功率损耗(TLP)或恢复时间(RT)而言)似乎遵循上层的幂律行为。分布的尾巴。但是,这种模式(也称为帕累托分布)在那些主要事件的整个范围内均无效。我们旨在找到一种可以用来对它们进行建模的概率分布,并假设存在一个两参数模型,可以很好地在整个域中拟合这些数据的模式。我们考虑了2002年至2012年期间欧洲电网发生的重大故障;分析了这些可靠性指标:ENS,TLP和RT;拟合六个替代模型:ParetoⅡ,Fisk,对数正态,Pareto,Weibull和Gamma分布,以最大可能性拟合数据。通过贝叶斯信息准则比较了这些模型;通过基于bootstrap重采样的Kolmogorov-Smirnov测试方法测试了这些模型的拟合优度;并通过秩大小图以图形方式对其进行验证。我们发现,在TLP的情况下,ParetoⅡ分布是描述整个电网主要事件可靠性数据的适当模型,而在ENS和RT的情况下,则是分析的六个替代模型的最佳选择。

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